基于深度学习的无人机石油管道周围威胁目标检测研究

Qiang Wu, Xuegang Wu, Xin Zheng, Bin Yue
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引用次数: 0

摘要

随着无人机技术的发展,无人机以其建设成本低、安全风险系数低、操作方便等优点被广泛应用于各种工程中。在无人机平台方面,目前典型采用复合机翼和多旋翼无人机,可实现基本飞行航路。在图像检测方面,主要利用神经网络对图像中的目标进行分类和识别。本文对YOLOV4算法进行了改进,使其更适合于无人机对地面目标的探测。在无人机地面探测中,目标多为小目标,因此采用聚类方法对小目标进行锚点重新设计。由于小目标的特征在浅特征层中具有更多的细节,因此将浅特征叠加到特征提取层中,并将浅特征与深特征融合。在数据处理中,对数据进行增强、色彩抖动、翻转、裁剪等对数据集进行扩展。通过对改进后的网络的测试,得到了以下结果:总体mAP提高了9.3%,对人等小目标的mAP提高了23.75%,对工作车辆的mAP提高了15.4%。提高了对小目标的检测效率,速度满足实时性要求,可部署在无人机上进行无人机检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on UAV Detection of Threat Target around oil Pipeline Based on Deep Learning
With the development of UAV, UAV has been applied to various projects with its advantages of low construction cost,low safety risk coefficient and convenient operation.In terms of UAV platform, currently composite wing and multi-rotor UAV are typically adopted, which can realize basic flight route. In terms of image detection, neural network is mainly used to classify and recognize the target in the image. In this paper, the YOLOV4 algorithm is improved to make it more suitable for UAV detection of ground targets.In the ground detection of UAV, most of them are small targets, so clustering method is used to redesign anchor for small targets. Because the features of small targets have more details in the shallow feature layer, the shallow feature is superimposed into the feature extraction layer, and the shallow feature and the deep feature are fused.In the data processing, data enhancement, color dithering, flipping, cutting of the data set for expansion. Through the test of the modified network, the following results are obtained: the overall mAP is improved by 9.3%, the detection mAP for small targets such as people is improved by 23.75%, and the detection mAP for working vehicles is improved by 15.4%. The detection efficiency of small targets is improved, and the speed can meet the real-time requirements, and it can be deployed in the UAV for UAV detection.
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